首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >Recognition-based indoor topological navigation using robust invariant features
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Recognition-based indoor topological navigation using robust invariant features

机译:使用鲁棒不变特征的基于识别的室内拓扑导航

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In this paper, we present a recognition-based autonomous navigation system for mobile robots. The system is based on our previously proposed robust invariant feature (RIF) detector. This detector extracts highly robust and repeatable features based on the key idea of tracking multi-scale interest points and selecting unique representative local structures with the strongest response in both spatial and scale domains. Weighted Zernike moments are used as the feature descriptor and applied to the place recognition. The navigation system is composed of on-line and off-line two stages. In the off-line learning stage, we train the robot in its workspace by just taking several images of representative places as landmarks. Then, in the on-line navigation stage, the robot recognizes scenes, obtains robust feature correspondences, and navigates the environment autonomously using the iterative pose converging (IPC) algorithm which is based on the idea of the visual servoing technique. The experimental results and the performance evaluation show that the proposed navigation system can achieve excellent performance in complex indoor environments.
机译:在本文中,我们提出了一种基于识别的移动机器人自主导航系统。该系统基于我们先前提出的鲁棒不变特征(RIF)检测器。该探测器基于跟踪多尺度兴趣点并选择在空间和尺度域中响应最强的独特代表性局部结构的关键思想,提取出高度鲁棒且可重复的特征。加权的Zernike矩用作特征描述符,并应用于位置识别。导航系统由在线和离线两个阶段组成。在离线学习阶段,我们仅通过将代表地点的几张图像作为地标来训练机器人在其工作区中。然后,在在线导航阶段,机器人使用基于视觉伺服技术思想的迭代姿势收敛(IPC)算法来识别场景,获得鲁棒的特征对应关系并自动导航环境。实验结果和性能评估表明,所提出的导航系统可以在复杂的室内环境下实现出色的性能。

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